Proceedings of the 26th Edition on Great Lakes Symposium on VLSI 2016
DOI: 10.1145/2902961.2902986
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Low-Power Manycore Accelerator for Personalized Biomedical Applications

Abstract: Wearable personal health monitoring systems can offer a cost effective solution for human healthcare. These systems must provide both highly accurate, secured and quick processing and delivery of vast amount of data. In addition, wearable biomedical devices are used in inpatient, outpatient, and at home e-Patient care that must constantly monitor the patient's biomedical and physiological signals 24/7. These biomedical applications require sampling and processing multiple streams of physiological signals with … Show more

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Cited by 15 publications
(1 citation statement)
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References 19 publications
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“…The result of proposed system enhances 43 percent more than existing system. [14] proposed low power mobile system with chip for calculating specific low power efficient nano clusters which is used for map, execute kernels. After that, a biomedical application was utilized to monitor inpatient, outpatient and e-patient care for both biomedical as well as physiological constantly.…”
Section: Figure 7 Dimming Performances With Auxiliary Loading At Diffmentioning
confidence: 99%
“…The result of proposed system enhances 43 percent more than existing system. [14] proposed low power mobile system with chip for calculating specific low power efficient nano clusters which is used for map, execute kernels. After that, a biomedical application was utilized to monitor inpatient, outpatient and e-patient care for both biomedical as well as physiological constantly.…”
Section: Figure 7 Dimming Performances With Auxiliary Loading At Diffmentioning
confidence: 99%